On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior

Boolean networks (BoN) are relatively simple and interpretable models of gene regulatorynetworks. Specifying these models with fewer parameters while retaining their ability to describe complex regulatory relationships is an ongoing methodological challenge. Additionally, extending these models to i...

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Main Authors: Van eTran, Matthew Nicholson McCall, Helene eMcMurray, Anthony eAlmudevar
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-12-01
Series:Frontiers in Genetics
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fgene.2013.00263/full
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spelling doaj-4000ea72fe3742f993e235f8ee72e00f2020-11-25T00:19:08ZengFrontiers Media S.A.Frontiers in Genetics1664-80212013-12-01410.3389/fgene.2013.0026368758On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behaviorVan eTran0Matthew Nicholson McCall1Helene eMcMurray2Anthony eAlmudevar3University of Rochester Medical CenterUniversity of Rochester Medical CenterUniversity of Rochester Medical CenterUniversity of Rochester Medical CenterBoolean networks (BoN) are relatively simple and interpretable models of gene regulatorynetworks. Specifying these models with fewer parameters while retaining their ability to describe complex regulatory relationships is an ongoing methodological challenge. Additionally, extending these models to incorporate variable gene decay rates, asynchronous gene response, and synergistic regulation while maintaining their Markovian nature increases the applicability of these models to genetic regulatory networks.We explore a previously-proposed class of BoNs characterized by linear threshold functions, which we refer to as threshold Boolean networks (TBN). Compared to traditional BoNs with unconstrained transition functions, these models require far fewer parameters and offer a more direct interpretation. However, the functional form of a TBN does result in a reduction in the regulatory relationships which can be modeled.We show that TBNs can be readily extended to permit self-degradation, with explicitly modeled degradation rates. We note that the introduction of variable degradation compromises the Markovian property fundamental to BoN models but show that a simple state augmentation procedure restores their Markovian nature. Next, we study the effect of assumptions regarding self-degradation on the set of possible steady states. Our findings are captured in two theorems relating self-degradation and regulatory feedback to the steady state behavior of a TBN. Finally, we explore assumptions of synchronous gene response and asynergistic regulation and show that TBNs can be easily extended to relax these assumptions.Applying our methods to the budding yeast cell-cycle network revealed that although the network is complex, its steady state is simplified by the presence of self-degradation and lack of purely positive regulatory cycles.http://journal.frontiersin.org/Journal/10.3389/fgene.2013.00263/fullsteady stateattractorgenetic regulatory networkBoolean networkstate augmentationfeedback loop
collection DOAJ
language English
format Article
sources DOAJ
author Van eTran
Matthew Nicholson McCall
Helene eMcMurray
Anthony eAlmudevar
spellingShingle Van eTran
Matthew Nicholson McCall
Helene eMcMurray
Anthony eAlmudevar
On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior
Frontiers in Genetics
steady state
attractor
genetic regulatory network
Boolean network
state augmentation
feedback loop
author_facet Van eTran
Matthew Nicholson McCall
Helene eMcMurray
Anthony eAlmudevar
author_sort Van eTran
title On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior
title_short On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior
title_full On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior
title_fullStr On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior
title_full_unstemmed On the underlying assumptions of threshold Boolean networks as a model for genetic regulatory network behavior
title_sort on the underlying assumptions of threshold boolean networks as a model for genetic regulatory network behavior
publisher Frontiers Media S.A.
series Frontiers in Genetics
issn 1664-8021
publishDate 2013-12-01
description Boolean networks (BoN) are relatively simple and interpretable models of gene regulatorynetworks. Specifying these models with fewer parameters while retaining their ability to describe complex regulatory relationships is an ongoing methodological challenge. Additionally, extending these models to incorporate variable gene decay rates, asynchronous gene response, and synergistic regulation while maintaining their Markovian nature increases the applicability of these models to genetic regulatory networks.We explore a previously-proposed class of BoNs characterized by linear threshold functions, which we refer to as threshold Boolean networks (TBN). Compared to traditional BoNs with unconstrained transition functions, these models require far fewer parameters and offer a more direct interpretation. However, the functional form of a TBN does result in a reduction in the regulatory relationships which can be modeled.We show that TBNs can be readily extended to permit self-degradation, with explicitly modeled degradation rates. We note that the introduction of variable degradation compromises the Markovian property fundamental to BoN models but show that a simple state augmentation procedure restores their Markovian nature. Next, we study the effect of assumptions regarding self-degradation on the set of possible steady states. Our findings are captured in two theorems relating self-degradation and regulatory feedback to the steady state behavior of a TBN. Finally, we explore assumptions of synchronous gene response and asynergistic regulation and show that TBNs can be easily extended to relax these assumptions.Applying our methods to the budding yeast cell-cycle network revealed that although the network is complex, its steady state is simplified by the presence of self-degradation and lack of purely positive regulatory cycles.
topic steady state
attractor
genetic regulatory network
Boolean network
state augmentation
feedback loop
url http://journal.frontiersin.org/Journal/10.3389/fgene.2013.00263/full
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